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1 Using Statistical Process Control (SPC) for improved Utility Management Scott Dorner Hach Company Manage and Transform data into information to gain efficiencies

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1

Using Statistical Process

Control (SPC) for improved

Utility Management

Scott Dorner

Hach Company

Manage and Transform data into

information to gain efficiencies

2

Data, Data Everywhere

• We track enormous amounts of data about our systems

– Lab for regulatory and to check process

– Online / SCADA for real time control

– Operator observations and tests

• Since we have collected all this data – How can we use it

to:

- To Save Money

- Improve Water Quality

3

Use SPC as part of Continuous Improvement

What is Statistical Process Control (SPC)?

A method of quality control which uses statistical methods. SPC is

applied in order to monitor and control a process. Monitoring and

controlling the process ensures that it operates at its full potential

thus eliminating waste.

4

Utilize SPC Principles as part of Plan-Do-

Check-Act

Use Statistical Process Control (SPC) Techniques to better

understand your systems.

The goal of SPC is to identify when we need to look deeper into a

situation or is this just “noise”.

– With properly set control limits, we can identify when the process has shifted

or become unstable. With this knowledge, we can then study that particular

situation (known as a “special cause”), identify root cause, and come up with a

plan to minimize or eliminate these occurrences.

– Walter Shewhart (founder of statistical quality control) found that control limits

placed at three standard deviations from the mean in either direction provide

an economical tradeoff between the risk of reacting to a false signal and the

risk of not reacting to a true signal – regardless the shape of the underlying

process distribution.

5

Some Examples on How to Use SPC

• If the process has a normal distribution, 99.7% of the population is captured

by the curve at three standard deviations from the mean. Stated another way,

there is only a 0.3% chance of finding a value beyond 3 standard deviations.

Therefore, a measurement value beyond 3 standard deviations indicates that

the process has either shifted or become unstable (more variability).

• Examples of parameters to look at using SPC:

• Effluent Quality Parameters – BOD, TSS, etc..

• Finished Water Quality Parameters – Turbidity, Cl2,etc…

• Wastewater Process Parameters – MLSS, SRT, F/M

• Variance between Process and Lab Results

• Benchmarks - Total Operating Cost/Treated Water, BOD Removed / KWH used

• ….????

6

Creating a control chart

Control limits are defined as follows:

• Upper Control Limit (UCL) – Average + 3 * Standard Deviation

• Upper Warning Limit (UWL) – Average + 2 * Standard Deviation

• QC Mean – Average

• Lower Warning Limit (UWL) – Average - 2 * Standard Deviation

• Lower Control Limit (LCL) – Average - 3 * Standard Deviation

Your initial QC Limits should be calculated

• From data when the process was running well

• Contains 20 or more data points

• Takes into account seasonal changes to process

7

How to calculate Standard Deviation

1. Calculate the Average of historical data

2. Find the difference of each value from the average

3. Calculate the Variance – The average of the squared differences

4. Take the Square Root of the Variance

• Usually 68% of samples will fall inside one standard deviation from the mean

• 95% fall within two standard deviation from the mean

• 99.7% fall within three standard deviation from the mean

• Software packages such as Excel (STDEV function), Hach WIMS,

etc… make the calculation easy.

8

Lab - Calculate the Standard Deviation

:

9

Lab - Calculate Control Limits

:

10

Creating a control chart

Plot the Control limits and the Average

11

Creating a control chart

Plot new data sets on

the chart

12

Interpreting SPC control charts

– All points above or below the Upper and Lower Control Limit

– 2 Consecutive points are above or below the Warning Limits

– 7 Consecutive points are on one side of the mean

– 5 Consecutive points are sloping in one direction

The following rules are derived from the “Western Electric Rules” - “The Western

Electric Rules were codified by a specially-appointed committee of the manufacturing

division of the Western Electric Company and appeared in the first edition of its Statistical

Quality Control Handbook in 1956.[2] Their purpose was to ensure that line workers and

engineers interpret control charts in a uniform way” - Wikipedia

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SPC Charts

• All points above or below the Upper and Lower Control Limit:

14

SPC Charts

• 2 Consecutive points are above or below the Warning Limits

15

SPC Charts

– 7 Consecutive points are on one side of the mean

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SPC Charts

• 5 Consecutive points are sloping in one direction

17

What samples indicate “Special Cause”

18

What samples indicate “Special Cause”

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What do we do with a “Special Cause”

It means that this is not normal. Therefore we should look into the

root cause. It is a call to action.

Brainstorm and look at data. Potentially plot TSS vs key parameters

(Influent Values, SRT, F/M, MLSS…).

20

Other SPC Charts

Histogram - Creates a picture of the data distribution

• Normally distributed data should create a “Bell Curve”• Allows you to see outliers that may skew your averages

Individuals and Moving Range (I-MR) chart• Shows variability between one data point and the next

Correlation• Scatter plot with best fit line (or curve) used for prediction

21

Histogram

A Histogram shows the frequency of certain values or categories in

a bar chart.

22

Individuals and Moving Range (I-MR) chart

An individuals and moving range

(I-MR) chart is a pair of control

charts used to determine if a

process is stable and

predictable.

It creates a picture of how the

system changes over time.

The individual (I) chart displays

individual measurements.

The moving range (MR) chart

shows variability between one

data point and the next.

23

Correlation chart

Plots pairs of points and draws

the best fit line thru the points.

Here we see that as rainfall

increases so does our flow. The

equation for the line is shown

and can be used for prediction:

Y = 0.4 X Rainfall + 2.77

Therefore if you expect one inch

of rain your predicted flow is.

3.17 (0.4 x 1 * 2.77)

24

Case Study

Western Berks Water Authority

Optimization for Chemical

Treatment/Costs

25

Chemical Cost per Day

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Chemical Cost per Day

Chemical costs

go up every

summer. Why?

Is it just the way

it is?

What is driving

the cost?

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Chemical Cost per Day

Plotted each chemical vs CCPD and found Coag is driving the cost

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Chemical Cost per Day

Raw water turb – there are times that the turb spike caused cost spike but the key learning here

is that cost spiked without Turb increase. So WHY??

We graphed around 3 years everything that we test for in Raw Water vs Cost (Turb, DO, Mn, Fe,

pH, Temp,ORP, Alage)

.

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Chemical Cost per Day

.

Discovered Manganese was the key driver for costs.

Discussed why with committee:

“In past, one time overfeed of Potassium permanganate

(KMno4) caused operators to be fearful of overfeeding. We

did not feed enough to remove (oxidize) the Mn. The Mn

would cause the Turb to creep up at Post DAF (pre filter), so

the operators added more Coag which had no effect on the

Mn. There is the waste.”

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Chemical Cost per Day

31

Chemical Cost per Day

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Chemical Cost per Day

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Conclusion

SPC has helped WBWA:

• Transition to a QA /QC mindset

•Collect and analyze data instrumental in meeting optimization goals

•Install internal controls for chemical inventory

•Standardize plant operations

•Optimize the treatment process by continuously calculating CCPD

34

Questions?

Scott Dorner – Hach

[email protected]

www.hach.com/iim